| Literature DB >> 29793899 |
Melvyn Zhang1, JiangBo Ying1, Guo Song1, Daniel Ss Fung2, Helen Smith3.
Abstract
BACKGROUND: Automatic processes, such as attentional biases or interpretative biases, have been purported to be responsible for several psychiatric disorders. Recent reviews have highlighted that cognitive biases may be modifiable. Advances in eHealth and mHealth have been harnessed for the delivery of cognitive bias modification. While several studies have evaluated mHealth-based bias modification intervention, no review, to our knowledge, has synthesized the evidence for it. In addition, no review has looked at commercial apps and their functionalities and methods of bias modification. A review is essential in determining whether scientifically validated apps are available commercially and the proportion of commercial apps that have been evaluated scientifically.Entities:
Keywords: attention bias; cognitive bias; mHealth; mobile applications; psychiatry; smartphone; telemedicine
Year: 2018 PMID: 29793899 PMCID: PMC5992457 DOI: 10.2196/10034
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Figure 1Flowchart of article selection.
Overview of attention and cognitive bias modification apps in the published literature.
| Reference | Condition targeted | Description of intervention | Method of ABMa | Main outcomes reported | Availability in commercial stores |
| Clarke, 2016 [ | Insomnia | ABM task involving 48 word pairs comprising sleep-related threat words paired with nonthreat words. | Dot-probe task | The primary outcome measured was whether the delivery of attention bias task could help reduce symptoms of insomnia and cognitive symptoms of presleep arousal. Participants who received ABM training reported significantly lower presleep arousal and better overall sleep quality. Those assigned to the ABM condition also fell asleep faster and woke less often during the night (based on electrophysiological measures) | No |
| Yang, 2017 [ | Social anxiety | CBM-Ab task involving the presentation of 2 faces as stimulus. CBM-Ic task based on the presentation of ambiguous scenarios. Attention and interpretation modification involving half the tasks for CBM-A and CBM-I. | Dot-probe task, CBM-I | The main outcome was to compare the effectiveness of 3 types of training program. Delivering cognitive bias modification via smartphone device is feasible. CBM-A and attention and interpretation modification was not effective as measured by the dot-probe attention bias scores. | No |
| Dennis, 2014 [ | Anxiety | Gamified ABM app | Dot-probe task | The main outcome of the study was to determine whether the gamified ABM task could help reduce threat bias, anxiety, and the stress reactivity of trait anxious individuals, in a way similar to that of laboratory-based bias modification. The single session helped reduce subjective anxiety and stress reactivity. Long-training bias modification helped reduce threat bias and difficulties with disengagement. | No |
| Dennis-Tiwary, 2016 [ | Anxiety | Gamified ABM app (Personal Zen) | Dot-probe task | Subjective anxiety and stress responses measured following the intervention showed that there was no difference in overall self-reported anxiety symptoms. However, behavioral performance improved during the stress task among female participants. | No |
| Kerst, 2014 [ | Smoking | Attention retraining via personal digital assistant in natural environment | Modified visual-probe task | The main outcome examined was whether delivering attention retraining on a personal digital device in the natural environment could help reduce attention bias and overall cravings for smoking. Attention bias decreased in the intervention group and overall craving decreased in the intervention group. | No |
| Denis-Tiwary, 2017 [ | Anxiety and stress | Gamified ABM app (Personal Zen) | Dot-probe task | Biobehavioral indices of prenatal stress and anxiety were reduced following the intervention. | No |
| Cox, 2015 [ | Alcohol | Gamified ABM app (ChimpShop) | Not specified | The main outcome measured was the amount of drinking. The intervention reduced drinking in problematic drinkers by 60%. | Yes |
| Robinson, 2017 [ | Smoking | Attention bias retraining | Visual-probe task | Attentional biases in smokers were reduced. Reduction in attention biases did not reduce craving or biological measures of smoking. | No |
aABM: attention bias modification.
bCBM-A: cognitive bias modification-attention.
cCBM-I: cognitive bias modification-interpretation.
Figure 2Flowchart of the selection of apps from the commercial stores.
Figure 3Overview of conditions targeted by both commercial and validated apps.